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A Novel CNN-Based Poisson Solver for Fluid Simulation

机译:用于流体模拟的基于CNN的新型泊松解算器

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Solving a large-scale Poisson system is computationally expensive for most of the Eulerian fluid simulation applications. We propose a novel machine learning-based approach to accelerate this process. At the heart of our approach is a deep convolutional neural network (CNN), with the capability of predicting the solution (pressure) of a Poisson system given the discretization structure and the intermediate velocities as input. Our system consists of four main components, namely, a deep neural network to solve the large linear equations, a geometric structure to describe the spatial hierarchies of the input vector, a Principal Component Analysis (PCA) process to reduce the dimension of input in training, and a novel loss function to control the incompressibility constraint. We have demonstrated the efficacy of our approach by simulating a variety of high-resolution smoke and liquid phenomena. In particular, we have shown that our approach accelerates the projection step in a conventional Eulerian fluid simulator by two orders of magnitude. In addition, we have also demonstrated the generality of our approach by producing a diversity of animations deviating from the original datasets.
机译:对于大多数欧拉流体模拟应用来说,解决大型泊松系统在计算上是昂贵的。我们提出了一种新颖的基于机器学习的方法来加速这一过程。我们的方法的核心是深度卷积神经网络(CNN),在离散化结构和中间速度为输入的情况下,具有预测泊松系统解(压力)的能力。我们的系统由四个主要组件组成,即用于解决大型线性方程的深层神经网络,用于描述输入向量的空间层次结构的几何结构,用于减少训练中输入维度的主成分分析(PCA)过程,以及一种新颖的损失函数来控制不可压缩性约束。我们已经通过模拟各种高分辨率的烟雾和液体现象证明了我们方法的有效性。特别地,我们已经表明,我们的方法将常规欧拉流体模拟器中的投影步骤加快了两个数量级。此外,我们还通过产生与原始数据集不同的动画来证明我们方法的通用性。

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